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Application of a Deep Learning Algorithm for Combined Super-Resolution and Partial Fourier Reconstruction Including Time Reduction in T1-Weighted Precontrast and Postcontrast Gradient Echo Imaging of Abdominopelvic MR Imaging

Purpose: The purpose of this study was to test the technical feasibility and the impact on the image quality of a deep learning-based super-resolution reconstruction algorithm in 1.5 T abdominopelvic MR imaging. Methods: 44 patients who underwent abdominopelvic MRI were retrospectively included, of...

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Autores principales: Wessling, Daniel, Herrmann, Judith, Afat, Saif, Nickel, Dominik, Almansour, Haidara, Keller, Gabriel, Othman, Ahmed E., Brendlin, Andreas S., Gassenmaier, Sebastian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9600324/
https://www.ncbi.nlm.nih.gov/pubmed/36292057
http://dx.doi.org/10.3390/diagnostics12102370
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author Wessling, Daniel
Herrmann, Judith
Afat, Saif
Nickel, Dominik
Almansour, Haidara
Keller, Gabriel
Othman, Ahmed E.
Brendlin, Andreas S.
Gassenmaier, Sebastian
author_facet Wessling, Daniel
Herrmann, Judith
Afat, Saif
Nickel, Dominik
Almansour, Haidara
Keller, Gabriel
Othman, Ahmed E.
Brendlin, Andreas S.
Gassenmaier, Sebastian
author_sort Wessling, Daniel
collection PubMed
description Purpose: The purpose of this study was to test the technical feasibility and the impact on the image quality of a deep learning-based super-resolution reconstruction algorithm in 1.5 T abdominopelvic MR imaging. Methods: 44 patients who underwent abdominopelvic MRI were retrospectively included, of which 4 had to be subsequently excluded. After the acquisition of the conventional volume interpolated breath-hold examination (VIBE(Std)), images underwent postprocessing, using a deep learning-based iterative denoising super-resolution reconstruction algorithm for partial Fourier acquisitions (VIBE(SR)). Image analysis of 40 patients with a mean age of 56 years (range 18–84 years) was performed qualitatively by two radiologists independently using a Likert scale ranging from 1 to 5, where 5 was considered the best rating. Results: Image analysis showed an improvement of image quality, noise, sharpness of the organs and lymph nodes, and sharpness of the intestine for pre- and postcontrast images in VIBE(SR) compared to VIBE(Std) (each p < 0.001). Lesion detectability was better for VIBE(SR) (p < 0.001), while there were no differences concerning the number of lesions. Average acquisition time was 16 s (±1) for the upper abdomen and 15 s (±1) for the pelvis for VIBE(Std), and 15 s (±1) for the upper abdomen and 14 s (±1) for the pelvis for VIBE(SR). Conclusion: This study demonstrated the technical feasibility of a deep learning-based super-resolution algorithm including partial Fourier technique in abdominopelvic MR images and illustrated a significant improvement of image quality, noise, and sharpness while reducing TA.
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spelling pubmed-96003242022-10-27 Application of a Deep Learning Algorithm for Combined Super-Resolution and Partial Fourier Reconstruction Including Time Reduction in T1-Weighted Precontrast and Postcontrast Gradient Echo Imaging of Abdominopelvic MR Imaging Wessling, Daniel Herrmann, Judith Afat, Saif Nickel, Dominik Almansour, Haidara Keller, Gabriel Othman, Ahmed E. Brendlin, Andreas S. Gassenmaier, Sebastian Diagnostics (Basel) Article Purpose: The purpose of this study was to test the technical feasibility and the impact on the image quality of a deep learning-based super-resolution reconstruction algorithm in 1.5 T abdominopelvic MR imaging. Methods: 44 patients who underwent abdominopelvic MRI were retrospectively included, of which 4 had to be subsequently excluded. After the acquisition of the conventional volume interpolated breath-hold examination (VIBE(Std)), images underwent postprocessing, using a deep learning-based iterative denoising super-resolution reconstruction algorithm for partial Fourier acquisitions (VIBE(SR)). Image analysis of 40 patients with a mean age of 56 years (range 18–84 years) was performed qualitatively by two radiologists independently using a Likert scale ranging from 1 to 5, where 5 was considered the best rating. Results: Image analysis showed an improvement of image quality, noise, sharpness of the organs and lymph nodes, and sharpness of the intestine for pre- and postcontrast images in VIBE(SR) compared to VIBE(Std) (each p < 0.001). Lesion detectability was better for VIBE(SR) (p < 0.001), while there were no differences concerning the number of lesions. Average acquisition time was 16 s (±1) for the upper abdomen and 15 s (±1) for the pelvis for VIBE(Std), and 15 s (±1) for the upper abdomen and 14 s (±1) for the pelvis for VIBE(SR). Conclusion: This study demonstrated the technical feasibility of a deep learning-based super-resolution algorithm including partial Fourier technique in abdominopelvic MR images and illustrated a significant improvement of image quality, noise, and sharpness while reducing TA. MDPI 2022-09-29 /pmc/articles/PMC9600324/ /pubmed/36292057 http://dx.doi.org/10.3390/diagnostics12102370 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Wessling, Daniel
Herrmann, Judith
Afat, Saif
Nickel, Dominik
Almansour, Haidara
Keller, Gabriel
Othman, Ahmed E.
Brendlin, Andreas S.
Gassenmaier, Sebastian
Application of a Deep Learning Algorithm for Combined Super-Resolution and Partial Fourier Reconstruction Including Time Reduction in T1-Weighted Precontrast and Postcontrast Gradient Echo Imaging of Abdominopelvic MR Imaging
title Application of a Deep Learning Algorithm for Combined Super-Resolution and Partial Fourier Reconstruction Including Time Reduction in T1-Weighted Precontrast and Postcontrast Gradient Echo Imaging of Abdominopelvic MR Imaging
title_full Application of a Deep Learning Algorithm for Combined Super-Resolution and Partial Fourier Reconstruction Including Time Reduction in T1-Weighted Precontrast and Postcontrast Gradient Echo Imaging of Abdominopelvic MR Imaging
title_fullStr Application of a Deep Learning Algorithm for Combined Super-Resolution and Partial Fourier Reconstruction Including Time Reduction in T1-Weighted Precontrast and Postcontrast Gradient Echo Imaging of Abdominopelvic MR Imaging
title_full_unstemmed Application of a Deep Learning Algorithm for Combined Super-Resolution and Partial Fourier Reconstruction Including Time Reduction in T1-Weighted Precontrast and Postcontrast Gradient Echo Imaging of Abdominopelvic MR Imaging
title_short Application of a Deep Learning Algorithm for Combined Super-Resolution and Partial Fourier Reconstruction Including Time Reduction in T1-Weighted Precontrast and Postcontrast Gradient Echo Imaging of Abdominopelvic MR Imaging
title_sort application of a deep learning algorithm for combined super-resolution and partial fourier reconstruction including time reduction in t1-weighted precontrast and postcontrast gradient echo imaging of abdominopelvic mr imaging
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9600324/
https://www.ncbi.nlm.nih.gov/pubmed/36292057
http://dx.doi.org/10.3390/diagnostics12102370
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